Micromachines (Aug 2022)

An AI-powered Electronic Nose System with Fingerprint Extraction for Aroma Recognition of Coffee Beans

  • Chung-Hong Lee,
  • I-Te Chen,
  • Hsin-Chang Yang,
  • Yenming J. Chen

DOI
https://doi.org/10.3390/mi13081313
Journal volume & issue
Vol. 13, no. 8
p. 1313

Abstract

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Aroma and taste have long been considered important indicators of quality coffee. Specialty coffee, that is, coffee from a single estate, farm, or village in a coffee-growing region, in particular, has a unique aroma that reflects the coffee-producing region. In order to enable the traceability of coffee origin, in this study we have developed an e-nose system to discriminate the aroma of freshly roasted coffee in different production regions. In the case study, we employed the e-nose system to experiment with various machine learning models for recognizing several collected coffee beans such as coffees from Yirgacheffe and Kona. Additionally, our contribution also includes the development of a method to create an aromatic digital fingerprint of a specific coffee bean to identify its origin. The experimental results show that the developed e-nose system achieves good recognition performance for coffee aroma recognition. The extracted digital fingerprints have great potential to be stored in an extensible coffee aroma database similar to a comprehensive library of specific coffee bean aroma characteristics, for traceability and reconfirmation of their origin.

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